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PROBABILISTIC MODELING AND REASONING IN MULTIAGENT DECISION SYSTEMS ZENG YIFENG NATIONAL UNIVERSITY OF SINGAPORE 2005 PROBABILISTIC MODELING AND REASONING IN MULTIAGENT DECISION SYSTEMS ZENG YIFENG (M. ENG., Xia’men University, PRC) A THESIS SUBMITTED FOR THE DEGREE OF DOCTOR OF PHILOSOPHY DEPARTMENT OF INDUSTRIAL AND SYSTEMS ENGINEERING NATIONAL UNIVERSITY OF SINGAPORE 2005 Acknowledgements As I will soon get my PHD degree from the NUS, I would like to express my heartfelt gratitude to the many people who I am indebted to. First and foremost, I would like to thank my supervisor, professor Poh Kim Leng. He has offered many fresh insights on how I should conduct my research work. Besides, he has also helped me in writing some comprehensive and well-motivated academic papers. I am grateful to his advice, encouragement and patience under his supervision. I would also like to thank professor Leong Tze Yun. She has been supporting my research work and research activities since I joined the Biomedical Decision Engineering (BiDE) group four years ago. She has pointed out many mistakes in earlier versions of this dissertation, and given many valuable suggestions on the revision. I must also acknowledge professor Marek J. Druzdzel in University of Pittsburgh (U. S.), who has offered great advice on a part in this dissertation. He has been helping the building of my academic career. My colleagues at the BiDE group, including Li Guoliang, Jiang Changan, Liu Jiang, Chen Qiongyu, Rohit, Yin Hongli, Ong Chenhui, Zhu Peng, Zhu Ailing, Xu Songsong, and Li Xiaoli, has all asked interesting questions in my presentation, and offered helpful comments on my research. I have enjoyed their company in our trips to meetings and conferences abroad. I My juniors, including Cao Yi, Wang Yang, Wu Xue, Guo Lei, and Wang Xiaoying, have been painfully reading the earlier versions of this dissertation. They has put much effort into the correction of confusing sentences, and given useful remarks on my research. The members of the system modeling and analysis laboratory (SMAL), including Han Yongbin, Liu Na, Liu Guoquan, Zhou Runrun, Xiang Yanping, Lu Jinying, Bao Jie, and Aini, have spent a lot of time with me during my stay in Singapore. We have all got along very well. The lab technician, Tan Swee Lan, has provided an easy and convenient work space for us. I will memorize the happy time there for ever. Last but certainly the most important, I owe a great debt to my family members: my wife Tang Jing, my father, my mother, and my brother. Their love and continual support on all levels of my life are priceless. II Table of Contents Introduction . 1.1 Background and Motivation .1 1.2 The Multiagent Decision Problem 1.3 The Application Domain 1.4 Objectives and Methodologies 1.5 Contributions 1.6 Overview of the Thesis .7 Literature Review 11 2.1 2.1.1 Bayesian Networks and Multiply Sectioned Bayesian Networks 11 2.1.2 Influence Diagrams and Multiagent Influence Diagrams .19 2.2 Intelligent Agents and Multiagent Decision Systems .27 2.3 Learning Bayesian Network Structure from Data 31 2.3.1 Basic Learning Methods .33 2.3.2 Advanced Learning Methods 36 2.4 Bayesian Networks and Influence Diagrams 11 Summary .39 Model Representation 41 3.1 Agency and Influence Diagrams .41 3.2 Multiply Sectioned Influence Diagrams and Hyper Relevance Graph .43 3.2.1 Multiply Sectioned Influence Diagrams (MSID) .46 III 3.2.2 3.3 Model Construction 53 3.3.1 MSID and HRG 53 3.3.2 Modeling Process . 54 3.4 An Application . 56 3.4.1 Case Description . 57 3.4.2 Model Formulation . 58 3.5 Hyper Relevance Graph (HRG) . 49 Summary 63 Model Verification 65 4.1 The Introduction . 65 4.2 Foundation of Symbolic Verification . 67 4.3 Symbolic Verification of DAG structure . 68 4.3.1 Basic Concepts . 69 4.3.2 DPs with Algebraic Description . 70 4.3.3 Find DC 74 4.3.4 Complexity Analysis 75 4.3.5 Dealing with Verification Failure . 77 4.4 Symbolic Verification of Agent Interface 77 4.4.1 Process of Symbolic Verification . 78 4.4.2 Complexity Analysis and Further Discussion 81 4.4.3 Dealing with Verification Failure . 83 4.5 Pairwise Verification of Irreducibility of D-sepset 84 4.6 Summary 86 IV Model Evaluation . 87 5.1 The Introduction .87 5.2 Cooperative Reduction Algorithms 88 5.2.1 Legal Transformation .89 5.2.2 Local and Global Elimination Sequence 91 5.2.3 Global Elimination Sequence .96 5.2.4 C-Evaluation and P-Evaluation 104 5.2.5 Summary .111 5.3 5.3.1 Evaluation Network 114 5.3.2 Multiple Evaluation Networks 120 5.3.3 Distributed evalID Algorithms .122 5.4 Distributed evalID Algorithm .113 Indirect Evaluation Algorithm 125 5.4.1 Algorithm Design .126 5.4.2 Evaluation of SARS Control Situation .127 5.5 Comparison on the Three Evaluation Algorithms 129 5.6 Summary .131 Case Study 133 6.1 Decision Scenario .133 6.2 Model Formulation .136 6.3 Model Verification 140 6.3.1 Verification of DAG Structures 140 6.3.2 Verification of D-sepset 142 V 6.3.3 6.4 Model Evaluation . 145 6.4.1 Solve I1 . 146 6.4.2 Solve I2 . 147 6.4.3 Solve I3 . 147 6.4.4 Solve I4 . 148 6.4.5 Solve I5 . 148 6.4.6 Solve the MSID 149 6.5 Verification of Irreducibility 143 Summary 151 Block Learning Bayesian Network Structures from Data 153 7.1 The Challenge . 153 7.2 Block Learning Algorithm . 155 7.2.1 Generate Maximum Spanning Tree . 156 7.2.2 Identify Blocks and Markov Blankets of Overlaps 157 7.2.3 Learn Overlaps . 161 7.2.4 Learn Blocks and Combine Blocks 162 7.3 Experimental Results 165 7.3.1 Experiments on the Hailfinder Network 166 7.3.2 Experiments on the ALARM Network 173 7.4 Theoretical Discussion . 176 7.5 Further Discussion 179 7.6 Summary 182 VI Conclusion and Future Work 185 Reference Dechter, R. 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Application Domain Medicine is a very rich domain for multiagent decision making While the multiagent decision problems that I address are general, the application domain that I examine is focused on the policy design involving multiple communities or nations in medical decision making Differing from medical decision making on diagnostic test and therapy planning (Leong 1994), the decision problem... entities In the disease control domain, multiagent decision making will not only consider the uncertain environment, but also take into account the information exchange among the interacting units The uncertain environment and the personal judgments comprise uncertain information in the domain The complex relationships among associated decision entities determine the accessibility of public information and. .. provide a compact and informative representation for modeling decision problems in an uncertain setting However, these techniques lack the ability to tackle multiagent decision problems because they are oriented to the single agent paradigm without considering the features of multiple agents Recently, achievements in the multiagent reasoning system have cast light on research about multiagent decision problems... large domain with multiple decision entities, the uncertain information about disease and the intricate organizational relationships in the domain complicate a policy design process Furthermore, decision making in a distributed and cooperative setting requires a trade-off among multiple objectives Hence, the disease control involves both uncertain domain knowledge and the properties of multiple decision. .. valuable Decision making in uncertain environments mainly concerns decision problems in which a number of agents are involved Making a good decision in a multiagent system is particularly complicated when both the nature of decision scenario and the attributes of multiple agents have to be considered Research in decision analysis, artificial intelligence, operations research, and other disciplines has led... which this work is based and serves as a basis to a more detailed analysis on the capabilities and limitations of the existing approaches 2.1 Bayesian Networks and Influence Diagrams The concepts of Bayesian networks and influence diagrams are fundamental elements in the probabilistic modeling and reasoning They provide basic ideas and techniques for the probabilistic expert systems and are to a large segment... attributes of an objective in a large and complex domain However, it is unable to model the uncertainty about structures The probabilistic relational model evolves from OOBN and represents relationships between multiple instances of the same object class It introduces uncertainty into database schema resulting in a combination of probabilistic reasoning and entity-relational schema in databases The above... probabilistic reasoning in a multiagent system It provides a coherent framework for probabilistic reasoning in cooperative multiagent distributed interpretation systems It aims to solve a large and complex knowledge domain by dividing the domain into several subnets each of which is related with an intelligent agent With a distributed fashion, an MSBN allows the privacy protection of intelligent 16... future research 9 Chapter 1: Introduction [This page intentionally left blank] 10 2 Literature Review This chapter briefly surveys some related work: Bayesian networks and multiply sectioned Bayesian networks, decision modeling with influence diagrams and multiagent influence diagrams, intelligent agent and multiagent decision making, and Bayesian network structure learning The survey focuses on the . multiagent decision making. The work on solving decision problems involving multiple agents benefits the building of intelligent decision systems. The construction of intelligent decision systems. communication and reasoning in multiagent systems. They have successfully developed a distributed and coherent framework for solving probabilistic inference problems in multiagent systems. This. PROBABILISTIC MODELING AND REASONING IN MULTIAGENT DECISION SYSTEMS ZENG YIFENG NATIONAL UNIVERSITY OF SINGAPORE 2005 PROBABILISTIC